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Showing 1–4 of 4 results
Advanced filters: Author: Thomas Dzelzainis Clear advanced filters
  • The first experimental demonstration of saturable absorption in core-electron transitions in aluminium paves the way for investigating warm dense matter, which potentially has an important role in planetary science and the realization of inertial confinement fusion.

    • Bob Nagler
    • Ulf Zastrau
    • Justin S. Wark
    Research
    Nature Physics
    Volume: 5, P: 693-696
  • Applications of laser-plasma accelerated protons in fundamental, applied and medical sciences crucially depend on the creation of stable collimated beams with high repetition rates. Here the authors demonstrate the generation of multi-MeV protons at 5 Hz, with low (degree-level) proton beam divergence from a laser pulse focused onto a water sheet target, potentially mitigating the need for beam capturing techniques.

    • M. J. V. Streeter
    • G. D. Glenn
    • C. A. J. Palmer
    ResearchOpen Access
    Nature Communications
    Volume: 16, P: 1-9
  • Electron–positron pair plasma—a state of matter with a complete symmetry between negatively and positively charged particles—are found in many astrophysical object. Here, the authors use high-power laser to create an ion-free electron–positron plasma in the laboratory.

    • G. Sarri
    • K. Poder
    • M. Zepf
    ResearchOpen Access
    Nature Communications
    Volume: 6, P: 1-8
  • Machine learning offers transformative potential for laser-plasma accelerators, enabling real-time optimization, predictive modelling, and experimental automation. The authors present a synthetic diagnostic approach using deep neural networks to accurately predict proton energy spectra from laser-plasma interactions, demonstrating a non-intrusive diagnostic for high-repetition-rate operations and future applications.

    • Christopher J. G. McQueen
    • Robbie Wilson
    • Paul McKenna
    ResearchOpen Access
    Communications Physics
    Volume: 8, P: 1-11